New fuzzy k-NN classification by using genetic algorithm

@article{Lu2011NewFK,
  title={New fuzzy k-NN classification by using genetic algorithm},
  author={Junli Lu and Guang Zhao and Cheng Yang and Junjia Lu},
  journal={2011 Seventh International Conference on Natural Computation},
  year={2011},
  volume={2},
  pages={1111-1115}
}
Fuzzy k-NN classification is well-known in data mining, and genetic algorithm is ever been applied to calculate the parameter k and m of fuzzy k-NN[1], named IFKNN. This paper proposes a new fuzzy k-NN classification method by using genetic algorithm(NFKNN), which need less time and increases classification correct rate. We have verified the efficiency of our methods by theoretical analysis and experiments. The experiments are extensive and comprehensive, we compared each improvement with IFKNN… CONTINUE READING

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